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Region Diversity Based Saliency Density Maximization for Salient Object Detection

机译:基于区域多样性的显著性密度最大化用于显著目标检测

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摘要

Existing salient object detection methods either simply use a threshold to detect desired salient objects from saliency map or search the most promising rectangular window covering salient objects on the saliency map. There are two problems in the existing methods: 1) The performance of threshold-dependent methods depends on a threshold selection and it is difficult to select an appropriate threshold value. 2) The rectangular window not only covers the salient object but also contains background pixels, which leads to imprecise salient object detection. For solving these problems, a novel saliency threshold-free method for detecting the salient object with a well-defined boundary is proposed in this paper. We propose a novel window search algorithm to locate a rectangular window on our saliency map, which contains as many as possible pixels belonging the salient object and as few as possible background pixels. Once the window is determined, GrabCut is applied to extract salient object with a well-defined boundary. Compared with existing methods, our approach doesn't need any threshold to binarize the saliency map and additional operations. Experimental results show that our approach outperforms 4 state-of-the-art salient object detection methods, yielding higher precision and better F-Measure.
机译:现有的显著性目标检测方法要么简单地使用阈值从显著性图中检测所需的显著性目标,要么在显著性图上搜索最有前途的矩形窗口覆盖显著性对象。现有方法存在两个问题:1)阈值依赖方法的性能取决于阈值选择,难以选择合适的阈值。2)矩形窗口不仅覆盖了突出物体,还包含背景像素,导致突出物体检测不精确。针对这些问题,该文提出了一种新的无显著性无阈值检测边界显著性目标的方法。我们提出了一种新颖的窗口搜索算法,用于在我们的显著性图上定位一个矩形窗口,该窗口包含尽可能多的属于显著对象的像素和尽可能少的背景像素。确定窗口后,将应用 GrabCut 来提取具有明确定义边界的显著对象。与现有方法相比,我们的方法不需要任何阈值来二值化显著性映射和其他操作。实验结果表明,该方法优于4种最先进的显著目标检测方法,具有更高的精度和更好的F-Measure。

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